Online personalized recommendation services are generally hosted in the ...
Multi-party computing (MPC) has been gaining popularity over the past ye...
Privacy and security-related concerns are growing as machine learning re...
Speech emotion recognition (SER) processes speech signals to detect and
...
Stragglers, Byzantine workers, and data privacy are the main bottlenecks...
In the cloud computing era, data privacy is a critical concern. Memory
a...
Graph Neural Networks (GNNs) are the first choice methods for graph mach...
Federated learning has emerged as a popular paradigm for collaboratively...
Privacy and security-related concerns are growing as machine learning re...
Graph Neural Network (GNN) research is rapidly growing thanks to the cap...
Modern machine learning techniques are successfully being adapted to dat...
Checkpoints play an important role in training recommendation systems at...
Scaling up the convolutional neural network (CNN) size (e.g., width, dep...
Protecting the privacy of input data is of growing importance as machine...
Federated Learning (FL) has been proved to be an effective learning fram...
In the era of Internet of Things, there is an increasing demand for netw...
This work presents Origami, which provides privacy-preserving inference ...
Training a machine learning model is both compute and data-intensive. Mo...
Reducing the latency variance in machine learning inference is a key
req...
Graphs analytics are at the heart of a broad range of applications such ...
MLaaS (ML-as-a-Service) offerings by cloud computing platforms are becom...
While performing distributed computations in today's cloud-based platfor...
Data parallelism can boost the training speed of convolutional neural
ne...